电机定子绕组内部放电的局部放电建模*

Qasim Khan, S. Refaat, H. Abu-Rub, H. Toliyat
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引用次数: 3

摘要

旋转电机是电力系统的关键部件之一,采用适当的状态评估和故障检测技术可以提高电力系统的可靠性。局部放电(PD)识别对于绝缘评估至关重要,特别是对于在较高电压水平下运行的中大功率机组。本文提出了一个基于有限元的模型来描述电机定子绕组的局部放电行为。并从缺陷中计算出与商用检测系统相似的PD特征。所提出的基于有限元分析的计算模型利用了包括电动力学和热边界条件在内的多物理场。该模型描述了定子绕组在不同工作应力下缺陷和绝缘特性的完全变化。模拟的局部放电特性包括电荷大小和局部放电发生率与商业上可用的解决方案相当。该模型说明了绕组绝缘的恶化程度,其特征用于缺陷分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Partial Discharge Modeling of Internal Discharge in Electrical Machine Stator Winding *
Rotating machine is one of the critical elements of the power systems whose reliability is improved with proper condition assessment and fault detection techniques. Partial discharge (PD) identification is essential for the assessment of insulations particularly for medium and high power units operating at higher voltage levels. This paper proposes a finite element based model that illustrates the PD behavior in the electric machine stator winding. It also computes the PD features from the defects similar to the characteristics obtained by commercial detection systems. The proposed finite element analysis based computational model utilizes multiphysics which includes electrodynamics and thermal boundary conditions. This model describes complete variation in properties of defects and insulation of the stator winding under various operating stresses. The simulated PD features that include charge magnitude and PD occurrence are comparable with commercially available solutions. This model illustrates the level of deterioration in the winding insulation, whose characterization is used for defects classification.
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